在GPU上加速基于卷积的检测模型

Qi Liu, Zi Huang, Fuqiao Hu
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引用次数: 4

摘要

近年来,基于卷积的检测模型(CDM)在计算机视觉领域取得了巨大的成功,如基于可变形零件的模型(DPM)和卷积神经网络(CNN)。这些模型的简单性允许进行非常大规模的训练,以获得更高的鲁棒性和识别性能。然而,这些强大的最先进的模型的主要瓶颈是在模型训练和评估中不可接受的卷积计算成本,这已经成为许多实际应用中的主要限制。本文利用数学和并行技术对基于卷积的检测模型进行了加速。一方面,将空间空间的卷积运算转换为频域的点积运算,减少了计算量。另一方面,数据和任务在图形处理单元(GPU)上并行化,进一步减少了计算时间。在公共数据集Pascal VOC上的实验结果表明,与CPU上的多线程实现相比,使用商用GPU可以将整个卷积过程的速度提高2.13倍到4.31倍。
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Accelerating convolution-based detection model on GPU
Convolution-based detection models (CDM) have achieved tremendous success in computer vision in last few years, such as deformable part-based models (DPM) and convolutional neural networks (CNN). The simplicity of these models allows for very large scale training to achieve higher robustness and recognition performance. However, the main bottleneck of those powerful state-of-the-art models is the unacceptable computational cost of the convolution in model training and evaluation, which has become a major limitation in many practical applications. In this paper, we accelerate the convolution-based detection models with the mathematic and parallel techniques. On one hand, the convolution operation in the spatial space is converted to the dot product operation in the frequency domain for less computational cost. On the other hand, the data and tasks parallelized on graphical process units (GPU) reduce the computational time further. Experimental results on the public dataset Pascal VOC demonstrate that we can use commodity GPU to speed up the whole convolution process by 2.13x to 4.31x, compared to the multithreaded implementation on CPU.
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